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A large, open source dataset of stroke anatomical brain images and manual lesion segmentations

  • Sook Lei Liew
  • , Julia M. Anglin
  • , Nick W. Banks
  • , Matt Sondag
  • , Kaori L. Ito
  • , Hosung Kim
  • , Jennifer Chan
  • , Joyce Ito
  • , Connie Jung
  • , Nima Khoshab
  • , Stephanie Lefebvre
  • , William Nakamura
  • , David Saldana
  • , Allie Schmiesing
  • , Cathy Tran
  • , Danny Vo
  • , Tyler Ard
  • , Panthea Heydari
  • , Bokkyu Kim
  • , Lisa Aziz-Zadeh
  • Steven C. Cramer, Jingchun Liu, Surjo Soekadar, Jan Egil Nordvik, Lars T. Westlye, Junping Wang, Carolee Winstein, Chunshui Yu, Lei Ai, Bonhwang Koo, R. Cameron Craddock, Michael Milham, Matthew Lakich, Amy Pienta, Alison Stroud
  • University of Southern California
  • University of California at Irvine
  • Tianjin Medical University
  • University of Tübingen
  • Sunnaas Rehabilitation Hospital HT
  • University of Oslo
  • Child Mind Institute, Inc.
  • New York State Office of Mental Health
  • University of Texas Medical Branch at Galveston
  • University of Michigan, Ann Arbor

Research output: Contribution to journalArticlepeer-review

243 Scopus citations

Abstract

Stroke is the leading cause of adult disability worldwide, with up to two-thirds of individuals experiencing long-term disabilities. Large-scale neuroimaging studies have shown promise in identifying robust biomarkers (e.g., measures of brain structure) of long-term stroke recovery following rehabilitation. However, analyzing large rehabilitation-related datasets is problematic due to barriers in accurate stroke lesion segmentation. Manually-traced lesions are currently the gold standard for lesion segmentation on T1-weighted MRIs, but are labor intensive and require anatomical expertise. While algorithms have been developed to automate this process, the results often lack accuracy. Newer algorithms that employ machine-learning techniques are promising, yet these require large training datasets to optimize performance. Here we present ATLAS (Anatomical Tracings of Lesions After Stroke), an open-source dataset of 304 T1-weighted MRIs with manually segmented lesions and metadata. This large, diverse dataset can be used to train and test lesion segmentation algorithms and provides a standardized dataset for comparing the performance of different segmentation methods. We hope ATLAS release 1.1 will be a useful resource to assess and improve the accuracy of current lesion segmentation methods.

Original languageEnglish
Article number180011
JournalScientific Data
Volume5
DOIs
StatePublished - Feb 20 2018

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